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Time series analysis of InSAR data: Methods and trends

机译:InSAR数据的时间序列分析:方法和趋势

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Time series analysis of InSAR data has emerged as an important tool for monitoring and measuring the displacement of the Earth's surface. Changes in the Earth's surface can result from a wide range of phenomena such as earthquakes, volcanoes, landslides, variations in ground water levels, and changes in wetland water levels. Time series analysis is applied to interferometric phase measurements, which wrap around when the observed motion is larger than one-half of the radar wavelength. Thus, the spatio-temporal "unwrapping" of phase observations is necessary to obtain physically meaningful results. Several different algorithms have been developed for time series analysis of InSAR data to solve for this ambiguity. These algorithms may employ different models for time series analysis, but they all generate a first-order deformation rate, which can be compared to each other. However, there is no single algorithm that can provide optimal results in all cases. Since time series analyses of InSAR data are used in a variety of applications with different characteristics, each algorithm possesses inherently unique strengths and weaknesses. In this review article, following a brief overview of InSAR technology, we discuss several algorithms developed for time series analysis of InSAR data using an example set of results for measuring subsidence rates in Mexico City. (C) 2015 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:InSAR数据的时间序列分析已成为监视和测量地球表面位移的重要工具。地球表面的变化可能由多种现象引起,例如地震,火山,滑坡,地下水位变化以及湿地水位变化。时间序列分析适用于干涉式相位测量,当观察到的运动大于雷达波长的一半时,该相位测量就会环绕。因此,相位观测的时空“展开”对于获得物理上有意义的结果是必要的。已经开发了几种不同的算法来对InSAR数据进行时间序列分析,以解决这种歧义。这些算法可能采用不同的模型进行时间序列分析,但是它们都生成一阶变形率,可以将它们相互比较。但是,没有一种算法可以在所有情况下提供最佳结果。由于InSAR数据的时间序列分析用于具有不同特征的各种应用中,因此每种算法都具有固有的独特优势和劣势。在这篇评论文章中,在对InSAR技术进行简要概述之后,我们将使用为测量墨西哥城沉降率的示例结果集,讨论为InSAR数据进行时间序列分析而开发的几种算法。 (C)2015国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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